Methodology: Every two weeks we collect most relevant posts on LinkedIn for selected topics and create an overall summary only based on these posts. If you´re interested in the single posts behind, you can find them here: https://linktr.ee/thomasallgeyer. Have a great read!
Strategy and Operating Models
Clear AI roadmaps outperform framework hopping, with emphasis on a North Star before governance rollouts
Business focus is critical as many early generative AI initiatives underperform without measurable outcomes
Firms are moving from managing people to orchestrating AI systems and hybrid human-AI processes
Frontier-style operating capabilities emerge as a differentiator for future-ready enterprises
Leaders caution against hype, advocating disciplined investment and value tracking
Agents and Autonomy
Agentic AI is positioned as a step-change beyond linear workflows, defined by goals, tools, and bounded autonomy
Practical guidance stresses reducing chaos through scoped agents and strong orchestration
Trust and transparency remain central, with prompt engineering and human-in-the-loop shaping outcomes
Comparative views clarify that today’s agents imply responsibility yet remain tool-like in capability
Products and Platforms
Databricks introduces Agent Bricks to streamline building production-grade agents with defined setup guardrails
New creative tooling such as Nano Banana highlights collaborative, scalable AI image editing
Retrieval-Augmented Generation is reinforced as a pattern for virtual agents needing live data context
Practical buyer guidance emerges for AI video tools tailored to quality, speed, and use case fit
Concepts like Generative Engine Optimization signal a shift in how users access digital content
Partnerships and Ecosystem Moves
Broadcom collaborates with OpenAI on accelerator chips, signaling upstream hardware co-development
Fintech updates include regional expansions and new card programs linked to model ecosystems
Foundations and regional initiatives, such as IPAI, aim to strengthen European AI capability building
Industrial and defense communities coordinate around applied AI through joint exercises and forums
Adoption and Use Cases
Public sector examples show citizen service improvements, including the Buenos Aires City Government
Transportation operations such as subway systems pursue efficiency and productivity gains with AI
Banks apply structured frameworks for frictionless, personalized services in production settings
Pharma reports tangible value from in-house generative AI and associated human transformation
SMEs seek strategy-led transformation support, pairing European governance standards with delivery scale
Governance, Legal, and Policy
EU AI governance and the EU AI Act drive global compliance expectations and operating standards
Data governance and record-keeping practices are highlighted for audit-ready AI programs
Legal signals include copyright compensation debates and noted settlement narratives in model training
Professional bodies explore harmonized international rules to balance innovation and creator rights
National sector guides, such as Singapore’s legal guidance, provide domain-specific guardrails
Data, Infrastructure, and MLOps
Guidance prioritizes training data quality, references, and feedback loops over model swapping
Workflow automation connects conversation data to downstream systems for real-time operations
Clarity increases on when to use “ML mode” versus “AI mode” to right-size architecture and risk
Organizations weigh infrastructure choices in light of performance, security, and compliance needs
Workforce, Skills, and Leadership
Leadership relevance depends on combining empathy with data to steer adoption and change
HR plays a central role in people-first AI transformation, talent pipelines, and performance systems
Market signals include role shifts and restructuring tied to AI implementation strategies
Education use cases emphasize moving beyond surface tasks to equitable skill development
Teams invest in agent design skills and practical frameworks to replace hype with execution
Market Sentiment and Investment
Comparisons to prior tech cycles encourage long-term discipline amid visible hype
Capital and salary dynamics mirror earlier bubbles, reinforcing the need for ROI accountability
Investors map business model archetypes for AI, separating durable growth from transient spikes
Want to see the posts voices behind this summary?
This week’s roundup (CW 35/ 36) brings you the Best of LinkedIn on Artificial Intelligence:
→ 77 handpicked posts that cut through the noise
→ 40 fresh voices worth following
→ 1 deep dive you don’t want to miss